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UdeerLID+: Integrating LiDAR, Image, and Relative Depth with Semi-Supervised

Authors :
Ni, Tao
Zhan, Xin
Luo, Tao
Liu, Wenbin
Shi, Zhan
Chen, JunBo
Publication Year :
2024

Abstract

Road segmentation is a critical task for autonomous driving systems, requiring accurate and robust methods to classify road surfaces from various environmental data. Our work introduces an innovative approach that integrates LiDAR point cloud data, visual image, and relative depth maps derived from images. The integration of multiple data sources in road segmentation presents both opportunities and challenges. One of the primary challenges is the scarcity of large-scale, accurately labeled datasets that are necessary for training robust deep learning models. To address this, we have developed the [UdeerLID+] framework under a semi-supervised learning paradigm. Experiments results on KITTI datasets validate the superior performance.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2409.06197
Document Type :
Working Paper